K分量gmm流形上的插值

Hyunwoo J. Kim, N. Adluru, Monami Banerjee, B. Vemuri, Vikas Singh
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引用次数: 4

摘要

概率密度函数(pdf)是数学中的基本“对象”,在计算机视觉、机器学习和医学成像中有许多应用。计算两个pdf之间的距离和估计一组pdf的平均值等基本操作的可行性是我们选择使用的表示的直接函数。在本文中,我们研究了高斯混合模型(GMM)表示pdf文件的许多吸引人的特征。(1) gmm可以说比平方根参数化更具可解释性(2)模型复杂性可以通过组件的数量显式地控制(3)它们已经在许多应用程序中广泛使用。本文的主要贡献是数值算法,使这些对象的基本操作严格遵守其底层几何。例如,当对一组k分量GMM进行操作时,一阶期望是插值和平均等简单操作的结果应该提供一个同样是k分量GMM的对象。文献对系统地执行这些要求提供了很少的指导。结果表明,这些任务是扩散加权磁共振成像中常见的系综平均传播子(EAPs)场分析和处理的重要内部模块。我们提供原理实验证明,表明所提出的插值算法如何促进此类数据的统计分析,这对许多神经影像学研究至关重要。另外,我们还推导了我们的算法与高斯函数空间的有趣联系,这可能是独立的兴趣。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interpolation on the Manifold of K Component GMMs
Probability density functions (PDFs) are fundamental "objects" in mathematics with numerous applications in computer vision, machine learning and medical imaging. The feasibility of basic operations such as computing the distance between two PDFs and estimating a mean of a set of PDFs is a direct function of the representation we choose to work with. In this paper, we study the Gaussian mixture model (GMM) representation of the PDFs motivated by its numerous attractive features. (1) GMMs are arguably more interpretable than, say, square root parameterizations (2) the model complexity can be explicitly controlled by the number of components and (3) they are already widely used in many applications. The main contributions of this paper are numerical algorithms to enable basic operations on such objects that strictly respect their underlying geometry. For instance, when operating with a set of k component GMMs, a first order expectation is that the result of simple operations like interpolation and averaging should provide an object that is also a k component GMM. The literature provides very little guidance on enforcing such requirements systematically. It turns out that these tasks are important internal modules for analysis and processing of a field of ensemble average propagators (EAPs), common in diffusion weighted magnetic resonance imaging. We provide proof of principle experiments showing how the proposed algorithms for interpolation can facilitate statistical analysis of such data, essential to many neuroimaging studies. Separately, we also derive interesting connections of our algorithm with functional spaces of Gaussians, that may be of independent interest.
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